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Robust Modifications of U-statistics and Applications to Covariance Estimation Problems

Abstract

Let YY be a dd-dimensional random vector with unknown mean μ\mu and covariance matrix Σ\Sigma. This paper is motivated by the problem of designing an estimator of Σ\Sigma that admits tight deviation bounds in the operator norm under minimal assumptions on the underlying distribution, such as existence of only 4th moments of the coordinates of YY. To address this problem, we propose robust modifications of the operator-valued U-statistics, obtain non-asymptotic guarantees for their performance, and demonstrate the implications of these results to the covariance estimation problem under various structural assumptions.

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